Online Learning - Business Model
This page contains the business model for the Online Learning tool. Online learning enabler supports the adaptation logic of a system by updating and improving the adaptation rules.
Main Contributor
Partner: UDE
Category: Academic
Type: DevOps Solutions provider
Lean Canvas
Problem
Customer needs, requests and opportunities from the market |
Adaptive IoT systems in an open world setting (unknown unknowns) cannot be completely defined and realized during design-time, online learning to learn and improve the way that a system adapts during runtime is essential. |
Existing Alternatives |
Current online learning solutions were devised for systems (such as cloud and web) that can tolerate slow convergence and thus require sufficient time to learn. This is no longer sufficient for the highly dynamic IoT systems setting, where each actuation and action may have an effect (even negative) in the environment. Thus, novel online learning mechanisms are required. |
Solution
ENACT Result |
Online Learning enabler (enhanced reinforcement learning module taking into account the structure of the IoT systems' adaptation space) |
Exploitation Form |
As an academic partner exploitation will include publications, offering training courses, as well as using the ENACT outcomes as part of graduate teaching. |
Description |
Demonstrator, communications & publications, courses material |
Type |
Prototype software (available as open source research demo) |
Key Metrics
KPIs |
Increased convergence of online learning |
Time To Market / TRL at the end of the project |
Expected TRL4 at the end of the project |
Unique Value proposition
Value added by the solution |
The online learning enabler will empower IoT systems to self-adapt at runtime, even if the developers where not able to fully capture all potential future situations during design time. |
Unfair Advantage |
Incorporating knowledge about the structure of the software systems's adaptation space makes the reinforement learning algorithms capable of exploiting knowledge that standard RL algortihms are not aware of. |
Customer Segments
Type |
IoT DevOps Engineer |
Segment |
Generic |